Title of article :
Controlling structures by inverse adaptive neuro fuzzy inference system and MR dampers
Author/Authors :
Rezaiee-Pajand, M Civil Engineering Department - Ferdowsi University of Mashhad, Iran , Baghban, A Civil Engineering Department - Ferdowsi University of Mashhad, Iran
Abstract :
To control structures against wind and earthquake excitations, Adaptive Neuro Fuzzy
Inference Systems and Neural Networks are combined in this study. The control scheme consists
of an ANFIS inverse model of the structure to assess the control force. Considering existing
ANFIS controllers, which require a second controller to generate training data, the authors’
approach does not need another controller. To generate control force, active and semi-active
devices could be used. Since the active ANFIS inverse controller may not guarantee a
satisfactory response due to different uncertainties associated with operating conditions and
noisy training data, this paper uses MR dampers as semi-active devices to provide control
forces. To overcome the difficulty of tuning command voltage of MR dampers, a neural network
inverse model is developed. The effectiveness of the proposed strategy is verified and illustrated
using simulated response of the 3-story full-scale nonlinear benchmark building excited by
several earthquake records through computer simulation. Moreover, the recommended control
algorithm is validated using the wind-excited 76-story benchmark building equipped with MR
and TMD dampers. Comparing results with other controllers demonstrates that the proposed
method can reduce displacement, drift and acceleration, significantly.
Keywords :
MR damper , Adaptive Neuro Fuzzy Inference System , semi-active control , Control of structure
Journal title :
Astroparticle Physics